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No. 23, February 2012
Lindsay Shutes, Andrea Rothe
and Martin Banse
Factor Markets
in Applied Equilibrium Models
The current state and planned extensions
towards an improved presentation
of factor markets in agriculture
ABSTRACT
This paper describes how factor markets are presented in applied equilibrium models and
how we plan to improve and to extend the presentation of factor markets in two specific
models: MAGNET and ESIM. We do not argue that partial equilibrium models should
become more ‘general’ in the sense of integrating all factor markets, but that the shift of
agricultural income policies to decoupled payments linked to land in the EU necessitates the
inclusion of land markets in policy-relevant modelling tools. To this end, this paper outlines
options to integrate land markets in partial equilibrium models.
A special feature of general equilibrium models is the inclusion of fully integrated factor
markets in the system of equations to describe the functionality of a single country or a group
of countries. Thus, this paper focuses on the implementation and improved representation of
agricultural factor markets (land, labour and capital) in computable general equilibrium
(CGE) models. This paper outlines the presentation of factor markets with an overview of
currently applied CGE models and describes selected options to improve and extend the
current factor market modelling in the MAGNET model, which also uses the results and
empirical findings of our partners in this FP project.
FACTOR MARKETS Working Papers present work being conducted within the FACTOR MARKETS
research project, which analyses and compares the functioning of factor markets for agriculture in the
member states, candidate countries and the EU as a whole, with a view to stimulating reactions from other
experts in the field. See the back cover for more information on the project. Unless otherwise indicated, the
views expressed are attributable only to the authors in a personal capacity and not to any institution with
which they are associated.
Available for free downloading from the Factor Markets (www.factormarkets.eu)
and CEPS (www.ceps.eu) websites
ISBN 978-94-6138-194-1
© Copyright 2012, Lindsay Shutes, Andrea Rothe and Martin Banse
FACTOR MARKETS Coordination: Centre for European Policy Studies (CEPS), 1 Place du Congrès, 1000 Brussels,
Belgium Tel: +32 (0)2 229 3911 • Fax: +32 (0)2 229 4151 • E-mail: [email protected] • web: www.factormarkets.eu
Contents
1. Introduction ........................................................................................................................... 1 2. Integrating factor markets in partial general equilibrium models ...................................... 1 2.1 General concept .............................................................................................................. 1 2.2 Model specification ......................................................................................................... 3 3. Implementation of factor markets in computable equilibrium models – A general
overview ................................................................................................................................. 7 3.1 Introduction .................................................................................................................... 7 3.2 Factor demand ................................................................................................................ 7 3.3 Factor supply ................................................................................................................. 8 4. The current state of factor market modelling in MAGNET..................................................9 4.1 Factor market coverage in the GTAP database..............................................................9 4.1.1 Flexible structure of factor demand ................................................................... 10 4.1.2 Land supply function .......................................................................................... 12 4.2 Factor supply over time ................................................................................................ 13 4.3 Segmented agricultural and non-agricultural factor markets .................................... 13 4.4 Land allocation ............................................................................................................. 14 4.5 Extensions of factor market modelling in MAGNET .................................................. 15 5. Factor markets in selected CGE-Models ............................................................................. 17 5.1 Labour markets ............................................................................................................. 19 5.2 Capital markets ............................................................................................................ 20 5.3 Land markets ................................................................................................................ 21 References ...................................................................................................................................22 List of Figures
Figure 1. Land supply curve determining land conversion and land prices ............................... 2 Figure 2. Technology tree for nested production functions ........................................................ 7 Figure 3. Factor demand in GTAP .............................................................................................. 10 Figure 4. Example of factor demand in MAGNET ......................................................................11 Figure 5. Further example of factor demand in MAGNET .........................................................11 Figure 6. Land supply curve in MAGNET .................................................................................. 12 Figure 7. Land allocation in the MAGNET model ..................................................................... 15 List of Tables
Table 1. Land rental prices in EU member states in the base period (in Euro) .......................... 5 Table 2. Total land demand, potentially available land, and yearly change in area ...................6 Table 3. Possible extensions to factor market modelling in MAGNET ..................................... 16 Table 4. Overview of selected CGE with factor market modelling ............................................ 17 Table 5. Labour market features in global CGE model .............................................................. 19 Table 6. Capital market features in global CGE model ............................................................. 20 Table 7. Land market features in global CGE model ................................................................. 21
Factor Markets
in Applied Equilibrium Models
The current state and planned extensions
towards an improved presentation
of factor markets in agriculture
Lindsay Shutes, Andrea Rothe and Martin Banse*
Factor Markets Working Paper No. 23/February 2012
1.
Introduction
It must sound a bit strange for most modellers to integrate factor markets in partial
equilibrium models and still keep them ‘partial’. It is a special feature of general equilibrium
models to have factors markets integrated in their systems of equations to describe the
functionality of a single country or a group of countries. This working paper maintains a
distinction between partial and general equilibrium models, even with factor markets
integrated in partial equilibrium models.
2.
Integrating factor markets in partial general equilibrium models
2.1 General concept
The shift of agricultural income policies to decoupled payments linked to land in the EU
necessitates the inclusion of land markets into a policy relevant modelling tool. Many existing
partial equilibrium models present crop supply as a function of yield and agricultural area,
see CAPSIM, AGLINK, AgMEMOD and ESIM. In all of these models, area allocation is
determined by own and cross commodity prices. However, the presentation of the land
market itself is often modelled in a very simplistic way without modelling a ‘real’ land price
which adjusts to guarantee market clearing on land markets. Only CAPSIM – as a partial
equilibrium model – uses an endogenous land price while other partial equilibrium models
use scaling techniques to ensure that total land demand does not exceed land supply.
In general equilibrium models such as MAGNET (an extended version of GTAP known
formerly as LEITAP) or GOAL, land markets are endogenous to the model and rental prices
for land adjust such that total available area is not exceeded nor undershot.
However, while land markets are usually endogenous to CGEs, they are not included in most
partial equilibrium models. So far, this has also been true for ESIM and CAPRI. However, in
the course of research for the underlying work a land market module has been included. It is
largely based on an approach used by van Meijl et al. (2006), who modelled land supply in an
extended GTAP version. Although this approach has been applied to a CGE model, it also fits
in the general framework of ESIM when amended by technical and theoretical model
specifications. The underlying approach and its implementation in ESIM is described below.
Lindsay Shutes is a researcher at LEI, in The Hague. Andrea Rothe and Martin Banse are researchers
at the Johann Heinrich von Thünen Institute (vTI) in Braunschweig, Germany.
*
|1
2 | SHUTES, ROTHE & BANSE
Figure 1. Land supply curve determining land conversion and land prices
Land price
Land supply
D2’
P2’
P2
D2
D1’
D1
P1’
P1
Agricultural land
Q1
Q1’
Q2 Q2’
ω
Limiteff
Source: Own composition, following van Meijl et al. (2006).
The basic idea of the land market module in ESIM relies on a land supply curve, which
specifies the relation between land supply and the price for land in each region. Thereby, a
distinction between rental and purchase prices is not relevant. Land supply to the
agricultural sector can be influenced by urbanisation, which is a very common situation in
EU member states, and by conversion of non-agricultural land into land that can be used for
agricultural purposes (van Mejil et al., 2006). The latter case occurs in some of the NMS only
(see below). In addition, also political measures, e.g. obligatory set-aside restrictions, have a
direct influence on land supply. Figure 1 illustrates the land supply curve.
The design of the land supply curve is based on the idea that the most productive land is first
taken into production. Additionally, the physical limit of taking additional land into
agricultural production is considered.
If the difference between land, which is used for agricultural land, and the overall
endowment of land resources, which could potentially be used by farming activities, is large,
an increasing demand for agricultural land would lead to a conversion of non-agricultural
land into agricultural land (van Meijl et al., 2006). Such a situation is depicted at the flat part
of the land supply curve in
Figure 1. Here, an increase in demand for land by farmers, which could, for example, result
from an increase in the overall price level for agricultural products, shifts the land demand
function from D1 to the D1’. Though a significant amount of land is additionally taken into
production, which is represented by the shift from Q1 to Q1’, land prices increase only
moderately from P1 to P1’. Thereby, the increase in land prices reflects the costs of bringing
additional land into production. In contrast, if overall land endowments are scarce and there
is not much room left to bring additional land into production, an increase in demand for
agricultural land leads to significant increases in land prices, while the agricultural area is
extended only slightly. Such a situation is depicted on the steeper part of the land supply
curve. While land prices increase considerably from P2 to P2’, agricultural land is extended
from Q2 to Q2’ only.
FACTOR MARKETS IN APPLIED EQUILIBRIUM MODELS | 3
2.2 Model specification
The mathematical specification of the land supply function as well as the interactions
between land supply and land demand are not identical to the specifications made by van
Meijl et al. (2006). This can be traced back to fact that the model structure of the CGE model,
which is the basis of the approach chosen by van Meijl et al. (2006), is different from the
structure of a partial equilibrium model like ESIM. Accordingly, mathematical specifications
regarding the inclusion of the land market in ESIM rely partly on own considerations, while
the basic idea regarding the features of the land market function are taken from van Meijl et
al. (2006).
In ESIM, the shape of the land supply (LS) curve is modelled according to the following
equation:
LS
cc
=
Limiteff − α / (β + LP
cc
cc
cc
cc
)
where
Limiteffcc
is the effective total amount of land, which can potentially be used for
agricultural production,
αcc
is a parameter determining the bend of the land supply curve,
βcc
is a parameter determining the bending of the land supply curve,
LPcc
is the land price.
Limiteff is endogenous to the model and is determined as follows:
Limiteff
cc
=
ω ∗θ
cc
cc
− Oblsetcc
where
ωcc
is the total amount of land, which can potentially be used for agricultural
production, which includes currently used agricultural land, fallow land
plus obligatory set-aside area,
θcc
is the rate, by which ω changes each year over the whole simulation
period due to urbanisation or conversion of land into potentially usable
agricultural area,
Oblsetcc
is the obligatory set-aside area, which depends on the grandes cultures
area and the set-aside rate set out each year.
The following paragraph describes, which mathematical specifications, mechanisms,
and equations ensure the equilibrium on the land market by the adjustment of land
prices.
Assume again an increase in the overall price level for agricultural products. As mentioned
above, this leads to an increase in overall demand for agricultural area given the area
allocation function as specified in previous ESIM versions (Banse et al., 2005):
⎛ ln area int cc ,cr , j + ∑ (ε cc,cr , j ∗ ln PI cc, j ) + λcc,cr ∗ ln capccc
⎜
j
=
exp
Areacc,cr
⎜⎜
⎝ + μ cc ,cr ∗ ln wag cc + ς cc,cr ∗ ln med cc
⎞
⎟
⎟⎟
⎠
where
areaintcc,cr,j
is the area intercept,
εcc,cr,j
is the elasticity of area allocation with respect to prices,
λcc,cr
is the elasticity of area allocation with respect to capital costs,
4 | SHUTES, ROTHE & BANSE
μcc,cr
ςcc,cr
is the elasticity of area allocation with respect to wages,
is the elasticity of area allocation with respect to costs of
intermediates.
However, in order to ensure that total land demand does not exceed total land supply, and in
order to meet the overall equilibrium condition on the land market, which requires that
LS
cc
=
∑ Area
cr
cc , cr
,
the land price increases. This, in turn, compensates the stimulating effect of increasing
product prices on area demand to some extent, since the land price has been introduced as
one argument into the land allocation function, which is now re-specified as:
⎛ ln area int cc ,cr , j + ∑ (ε cc ,cr , j ∗ ln (PPcc , j + DPcc , j )) + λcc ,cr ∗ ln capccc
⎜
j
=
exp
AreaCr,C
⎜⎜
⎝ + μ cc ,cr ∗ ln wag cc + η cc ,cr ∗ ln med cc + σ cc ∗ ln LPcc
⎞
⎟
⎟⎟
⎠
where
σ,cc
is the area allocation elasticity with respect to the land price.
Due to limited data availability, it was not possible to estimate area allocation elasticities.
Therefore and in contrast to all other input elasticities, the area allocation elasticity with
respect to the land price is the same for all kinds of area uses. We applied a rather low
elasticity value which reflects a rather ‘sticky’ behaviour for agricultural land markets.
However, it should be mentioned that this assumption has consequences for the functioning
of the land markets and needs further research. The approach of determining this elasticity,
however, corresponds to the determination of the labour, capital, and intermediate
elasticities. A description of the determination of these elasticities follows in Banse et al.
(2008).1
In order to calibrate the parameters of the land supply function, β has been assumed to be
proportional to the total land supply in each country. The parameter α has been calibrated in
such a way that it reproduces the base data for land prices, total land supply, and effective
total amount of land, which can potentially be used for agricultural production. Most land
prices have been taken from European Commission (2007) and Latruffe & Le Mouel (2006),
who provided a comprehensive overview of the land markets in various member states of the
EU. Due to a lack in data availability, however, some land prices rely on own estimations.
Table 1 shows the levels of land prices assumed for the analysis in this work. Though ESIM
does not distinguish between rental and purchase prices it should be mentioned that these
figures represent rental rates.
It is striking that for the time of the base period, i.e. prior to EU enlargement and
implementation of the MTR reform, rental prices in the EU-12 are far below average prices in
EU-15 members. However, in both groups of member states significant differences among
countries exist. Romania and Bulgaria are expected to have the lowest land prices within the
group of EU-12 member states. Land prices in Hungary, Poland, and the Czech Republic are
three to four times higher.
As shown in Table 1, among the group of EU-15 members the highest prices for agricultural
land exist in the Netherlands (€370) as well as in the Mediterranean countries (€300 to
€355) except France (€123), where the prices are the lowest. The high level of rental prices in
the latter countries might occur due to the existence of irrigation systems on a number of
It should be mentioned that the approach of land modelling is similar for all member states. Possible
market imperfections that might limit the functioning of land markets are only reflected in the
parameters of the functional form.
1
FACTOR MARKETS IN APPLIED EQUILIBRIUM MODELS | 5
agricultural areas, which have been installed by landowners and are provided for tenants.
Another or additional explanation might be that the costs of irrigation are included in the
rental prices. The reason for the high level of land prices in the Netherlands may be the large
number of fruit and vegetable-producing farms as well as the overall scarcity of land.
Table 1. Land rental prices in EU member states in the base period (in €/ha)
Austria
200
Latvia
10
185
Romania1
10
Denmark
290
Slovenia1
25
Finland
150
Lithuania
12.5
France
123
Bulgaria1
10
Germany
200
Poland
40
Greece
455
Hungary
45
Ireland1
200
Czech Republic
30
Italy
377
Slovakia
25
Netherlands
370
Estonia1
12
Portugal1
300
Spain
400
Sweden
140
United Kingdom
199
Belgium/Luxembourg
Authors’ own estimations.
Source: European Commission (2007), Latruffe & Le Mouel (2006), Swinnen & Vranken (2008) and
own estimation.
1
In case of the underlying modelling approach it is assumed that potentially available land,
expressed by the asymptote limiteff, is the sum of the agricultural land currently used for
production purposes and fallow land, which is neither obligatory nor voluntary set-aside
land. The asymptote ω additionally includes obligatory set-aside area. Data for fallow land
are obtained by Eurostat (2011) and FAO (2011). Table 2 illustrates the amount of total land
demand, i.e. the amount of land that is actually used for agricultural production, and the
amount of land that could potentially be used for agricultural production (limiteff). In
addition, the rate, by which ω is assumed to change year by year, is shown.
The table illustrates that in all countries of the enlarged EU additional land reserves exist,
which could be converted into agricultural land. In the EU-15, approximately 4.6 million ha,
and in the NMS (EU-12), about 3.6 million ha, could additionally be taken into production. In
both groups of countries unused land amounts to approximately 5.5% of the maximum
available agricultural area. These figures indicate lower land reserves than published in van
Meijl et al. (2006), who assume that more than 10% of the maximum available area is not
used for production purposes. The calculation of the land reserve for this study is based on
recently published data by EUROSTAT which explains this difference. Among individual
countries, however, significant differences exist. With respect to EU-15 members, the highest
shares of unused land reserves are observed in the Scandinavian countries of Sweden and
Finland (9.4% and 6.0%, respectively). In the member states of high population density, i.e.
most of all the Netherlands and Belgium/Luxembourg, unused land reserves amount to less
than 5% of the maximum available area. According to recent time series obtained from
Eurostat (2008), the total available area in most EU-15 members is assumed to remain
constant over time or to decrease by up to 1.6% per year. An increase in total available
agricultural area is assumed for Sweden and Finland only.
6 | SHUTES, ROTHE & BANSE
Table 2. Total land demand, potentially available land, and yearly change in area
Total land
demand
(million
ha)
Limiteff
(million
ha)
Gap in land demand
/limiteff (% of
limiteff)
Change in ω
(in % p.a.)
Austria
3,140.8
3,253.5
3.6
-0.10
Belgium/
Luxembourg
1,406.0
1,469.4
4.5
0.00
Denmark
2,660.9
2,690.7
1.1
-0.20
Finland
2,077.0
2,202.1
6.0
0.30
France
2,6671.1
28,089.8
5.3
-0.40
Germany
16,390.4
1,7450.2
6.5
-0.50
Greece
1,956.5
2,063.8
5.5
0.00
Ireland
3,820.7
3,826.3
0.1
0.00
Italy
11,769.5
1,1967.7
1.7
0.00
1,735.1
1,759.2
1.4
0.00
1,020.9
1,097.1
7.5
-1.60
16,621.2
17,318.4
4.2
-1.00
2,784.5
3,045.5
9.4
0.30
10,626.0
11,088.9
4.4
-0.10
EU-15
102,680.5
107,322.6
4.5
-0.37
Latvia
1,133.0
1147.5
1.3
-0.40
Romania
13,096.6
14,107.6
7.7
0.00
Slovenia
4,78.4
491.7
2.8
0.00
Lithuania
2,292.3
2,531.9
10.5
0.00
Bulgaria
4,398.9
4,946.3
12.4
-0.50
Poland
15,154.7
16,547.7
9.2
-0.50
Hungary
5,437.6
5,653.1
4.0
0.50
Czech Republic
4,113.8
4,191.0
1.9
0.20
Slovakia
2,212.9
2,283.1
3.2
0.00
722.3
785.6
8.8
0.00
49040.5
52685.7
7.4
-0.14
Netherlands
Portugal
Spain
Sweden
United Kingdom
Estonia
EU-12
Source: Eurostat (2011), and FAO (2011).
The situation in the NMS corresponds closely to the situation in their Western partner
countries. The share of unused land reserves in most countries lies between 1.3% in Latvia
and 12.4% in Bulgaria. The average decrease in maximum available agricultural area is
somewhat lower for total EU-12 on average than for the EU-15 on average (-0.14% compared
to -0.37%). Within the group of EU-12, total area is assumed to decrease in Latvia, Bulgaria
and Poland, while it increases in Hungary and the Czech Republic.
FACTOR MARKETS IN APPLIED EQUILIBRIUM MODELS | 7
3.
Implementation of factor markets in computable equilibrium
models – A general overview
3.1 Introduction
In addition to the representation of factor markets in partial equilibrium models, the
implementation of agricultural factor markets in computable equilibrium models (CGE) is
also of interest. In the first part, a general description of factor market implementation in
CGE models will be given. The current state of factor market modelling in GTAP and the
MAGNET model is described in the next section. Thereafter an overview of the different ways
in which factor markets are implemented in other existing CGE models is included.
The production of goods and services in a market economy requires factors and inputs. The
factors of production are labour, land and capital and other primary resources, which
producers combine with other intermediate inputs to make goods and services. Each of these
goods and services has a market price, which is determined by the interaction of supply and
demand. Every market is assumed to clear at this set of prices. In a regional CGE model,
production creates demand for value-added factors and goods and services used as
intermediate inputs. The implementation of factor markets in CGEs with regard to demand
and supply will be described in the following part.
3.2 Factor demand
The neoclassical theory represents the specification of production in national CGE models.
Therefore factor demands depend upon output and relative prices.
Production activities use intermediate inputs and primary factor inputs such as land, capital
and labour. Technology defines how these inputs are combined in the production process.
The physical relationship is defined by nested production functions. Figure 2 shows a
technology tree for a standard CGE model. There are two levels of the production process: in
the lower level are the value-added nest and the intermediate input nest. The second level
presents the combination of the value-added and intermediate nest for the final product.
Figure 2. Technology tree for nested production functions
Intermediate input demand
In standard CGE models, the use of intermediate inputs follows the Leontief fixed proportion
production function. As the ratio of inputs does not change, the elasticity of intermediate
input substitution elasticity is zero.
8 | SHUTES, ROTHE & BANSE
Value-added (factor) demand
Primary factors enter the production process in a manner allowing factor substitution. Factor
demand is specified though a value-added production function, such as the Cobb-Douglas
production function or constant-elasticity-of-substitution (CES), which describes the
substitution of production factors in a sector. The assumption that the producer is a cost
minimiser, leads him to choose the cost minimal factor ratio. In case of relative price
changes, he will substitute the relative expensive factor for the cheaper factor.
The standard factors of production are labour, land and capital. However, in CGE models it is
possible to disaggregate these factors, for example into skilled and unskilled labour, cropland
and grassland and so on. A higher level of disaggregation enables the model to do more
specific analyses of the effects of economic shocks.
Combination of factor and inputs
To produce the final good, the producer has to combine the intermediate inputs with the
bundles of factors. The way of realization is described in an aggregated production function
in which the two bundles can be substituted appropriate to the aggregate input elasticity.
This final process is regarded as a Leontief fixed proportion technology, which represents the
non-substitutability between intermediate and primary inputs.
3.3 Factor supply
This section describes the supply side and equilibrium conditions for the factor markets.
In CGE models, market behaviour for primary factors is analysed from both short-run and
long-run perspectives. In the short run, capital is assumed to be fixed by sector while labour
is assumed to be mobile between sectors and regions. In the long run, both capital and labour
are mobile between sectors and regions. Total available land is assumed fixed in both the
short and long run.
The standard assumption in a static CGE framework is a fixed supply of a nation’s factor
endowment. The effects of changes of the factor endowment of a nation can be analysed
through economic shocks, for example an increase of labour supply because of migration or a
decrease of capital because of investments in another nation. These shocks cause a change in
the nation’s productivity and also distributional effects. The increase of the factor supply can
affect increases on its wage or rent.
The mobility of factors describes their ability to move to other sectors in a country or between
countries, because of different wage rates or capital rents. Factors are fully mobile if they
are assumed to switch among sectors until differences in wages and rents disappear. Full
factor mobility can be regarded as a realistic view of capital and labour markets in the
medium or long run, because transition costs become less important over a longer period of
time. Factors can also be considered as partially mobile. In this case transition costs are so
high, that differences in wages and rents only cause some workers or equipment to move to
other employment. Under this assumption, factor movements are smaller than in the case of
full factor mobility. Factor mobility can also be sector-specific, which means that in the
short run, some factors are immobile. This assumption is often made in the case of capital,
which is bound to existing machinery and equipment. The wage or rent of the sector-specific
factor can differ across the sectors, but there will be no movement.
Alongside factor mobility, changes in factor productivity can also influence the supply of
factors.
Factor productivity is defined as the level of output per unit of factor input. An increase of
factor productivity means that the same input can create more output.
A change in the productivity of all factors in one industry by the same amount is called total
factor productivity. The change of the productivity of one single factor influences the effective
factor endowment. The effective factor endowment considers the quantity and the efficiency
of the factor, which can influence the demand and price of this factor.
FACTOR MARKETS IN APPLIED EQUILIBRIUM MODELS | 9
However, changes in the productivity of one factor can also affect the demand and prices of
other factors in three ways:
1.)
Higher productivity of one factor will cause a greater use of this factor because of lower
effective wages or rents, causing a substitution away from other factors. Changes in
productivity will be passed on the consumer. For instance, in the case of higher
productivity, the production cost will fall and the price will be lower. That leads to
higher demand and production. The demand for all factors will increase in the same
proportion as the change in output with constant relative factor prices.
2.)
If productivity of one factor increases, the demand for this factor will also increase,
because of lower product prices and the higher demand for the product.
3.)
Assuming a given output level, the change of the productivity of one factor affects the
demand for this factor.
The net effect of productivity change on factor demand is a combination of substitution,
output and productivity effects.
In addition, factor unemployment affects the factor supply. The common assumption in CGE
models with regard to employment is full employment of all factors. However, this is not a
realistic assumption and special factor market closures can be defined. The full employment
model closure causes wages and rents to adapt until the fixed supply of the factors is fully
employed. The unemployment closure fixes the wages or rents. Economic shocks, like for
example higher labour supply because of immigration, also affect the factor supply. In this
case the model will adjust until the factor supply and demand are equal at the fixed wages or
rents. Unemployment assumptions can lead to changes in a nation’s productive capacity and
the real GDP.
4.
The current state of factor market modelling in MAGNET
The Modular Applied GeNeral Equilibrium Tool (MAGNET, formerly LEITAP) is a global
computable general equilibrium model that covers the whole world economy including factor
markets. The model has been applied extensively to trade analyses, biofuel assessments and
CAP analyses. This section outlines the current state of factor market modelling in MAGNET.
Explicit reference is made to the modifications made to the model to better represent
agricultural factor markets over and above the GTAP (Global Trade Analysis Project) model
which forms the core of the model. The modelling of factor markets has been extended in
MAGNET in five key ways; both by incorporating developments from other models such as
GTAP-AGR, GTAP-E and GTAP-DYN and through unique innovations. The developments in
the MAGNET model better capture the demand and supply of factors and the mobility of
factors between sectors. The coverage of factor markets in the GTAP database is first
addressed and then each factor market extension is discussed in detail, including the data
requirements for the extension. Note that the modular nature of MAGNET allows the factor
market in each region to be specified differently with features that pertain to that region.
4.1 Factor market coverage in the GTAP database
The GTAP database includes the use of five factors of production2 by firms in the production
process: land, capital, skilled labour, unskilled labour and natural resources. Payments for
the use of factors in the production process is the only source of income to factors and the
income is distributed to the private household as the owner and supplier of factors and to the
government in the form of direct tax payments via the regional household . There are no
flows to domestically owned factors used overseas or foreign-owned factors used
domestically recorded in the standard database.
2 Considered as non-tradable commodities and referred to as endowment commodities in the GTAP
literature.
10 | SHUTES, ROTHE & BANSE
All firms use capital, skilled labour and unskilled labour; however, land is only used by
agricultural sectors and natural resources are only used by the forestry, fishing, coal, oil, gas
and other minerals sectors. Capital is the only factor that is subject to depreciation.
4.1.1
Flexible structure of factor demand
The demand for factor use by each sector is modelled in the standard GTAP model with a
two-level CES production nest as shown in Figure 3. At the lower level, aggregate value added
is formed through the optimal combination of factors which is then substitutable for all
intermediate inputs at the top level of the production nest. Substitution between primary
factors is inelastic for the agricultural and extraction sectors (with values of 0.2-0.24) and
higher among the other sectors (with values of 1.12-1.68). The elasticity of substitution
between aggregate value added and intermediate inputs is set at zero in the standard GTAP
version which reflects Leontief technology in which intermediate inputs and value added are
combined in fixed proportions to produce the output good.
Figure 3. Factor demand in GTAP The modelling of the production structure has been extended in two ways in MAGNET.
Firstly by allowing substitution between aggregate value-added and intermediate inputs at
the top level of the nest using the elasticities of substitution from the GTAP-AGR model.
Secondly, in place of the two-level CES production structure in the standard GTAP model, the
MAGNET model includes a fully flexible production structure in which the user can specify
the production structure for each region and/or sector. Allowing for multiple levels of the
production nest overcomes the disadvantage of a fixed production structure in which all pairs
of inputs at the same level of the nest have the same degree of substitutability. It may be
desirable for example to specify a different substitutability between capital and skilled labour
to reflect their complementary (see Figure 4).
FACTOR MARKETS IN APPLIED EQUILIBRIUM MODELS | 11
Figure 4. Example of factor demand in MAGNET Furthermore, the flexible production structure in MAGNET also allows for factors to be
directly substitutable with intermediate inputs. This may be desirable in scenarios of energy
use where capital and energy may be viewed as directly substitutable. The introduction of
direct substitution between capital and energy following the GTAP-E structure (Burniaux &
Truong, 2002) is shown in Figure 5. Clearly, the advantage of the MAGNET structure of
factor demand is its flexibility which allows the model to be tailored to each regions’
characteristics and the research question. Such flexibility does however require more data;
specifically the elasticities of substitution between inputs at all levels of the nest must be
specified as part of the modelling process.
Figure 5. Further example of factor demand in MAGNET
12 | SHUTES, ROTHE & BANSE
4.1.2 Land supply function
The supply of land, labour and natural resources is fixed in the standard static version of the
GTAP model. Also, although the capital stock can grow through investment (net of
depreciation), the static nature of the model means that new capital is not brought into use
until the next period and therefore the capital stock is also fixed. Unemployment can be
introduced into the model by fixing the nominal wage rate and allowing the quantity of
labour supplied to change.
The primary development of MAGNET in terms of factor supply is the introduction of a land
supply function which allows for more land to be used in agriculture at a higher rental rate up
to the maximum amount of land available. The positive relationship between land supply and
the land price is based on the assumption that additional land will be more costly to use as
either farmers have to use land that is less productive and therefore have higher associated
costs or it requires converting land from other uses into land suitable for agriculture, again at
higher cost.
The relationship between the average rental rate of land and land supply is specified for each
region using three pieces of information: current land use in km2, the maximum amount of
land available for use in km2 and the price elasticity of land supply. Data on current land use
and the maximum available land in each region are taken from work done with the IMAGE
model based on biophysical data (Eickhout et al., 2007).
An example of the land supply curve is shown in Figure 6, where l1 is the current land use,
is the total land available and forms the asymptote of the function, and the slope of the curve
is determined by the price elasticity of land supply. Clearly the proximity of current land
supply to maximum land supply has important implications for how changes in demand
affect the land price. In land-abundant countries such as Brazil, there is still a large amount
of land available, so an increase in demand (from D1 to D1*) can be accommodated with only
small increases in rental rates. In contrast, land-constrained regions such as the EU and
Japan are already using an amount of land close to the maximum available. A similar
increase in demand (from D2 to D2*) can only be met if the rental rate increases a great deal to
bring remaining land into the market.
Figure 6. Land supply curve in MAGNET
Source: Banse et al. (2008, p. 125).
FACTOR MARKETS IN APPLIED EQUILIBRIUM MODELS | 13
Allowing for changes in land supply and rental rates is important when the policy in question
will affect the demand for land. Regions that are land-abundant will be able to meet the
demand for extra land at lower prices than land-constrained regions which in turn affects the
regions’ competitiveness.
4.2 Factor supply over time
In addition to allowing factor supplies to change in response to changes in demand as in the
case of the land supply function, the dynamic nature of the MAGNET model also allows the
supply of factors to change over time. Growth in the labour supply is assumed to follow
USDA (US Department of Agriculture) population projections. Capital is assumed to grow in
line with baseline GDP growth also from USDA based on World Bank projections3 to
maintain a constant capital-output ratio. The new capital goods are assumed to be created
according to a fixed combination of inputs that varies by region and typically includes large
shares of construction and machinery and equipment complemented with electricity, trade
and business service inputs. The capital good is created from both imported and domestically
sourced inputs upon which sales taxes are levied, but without the use of factors. The factor
use associated with investment is assumed to already be embodied in the inputs used; there
is no extra value added in the creation of the investment good. Investment in the capital good
affects the demand for these inputs but does not affect the size of the capital stock as the
model is only run for one period. Investment in new capital goods is driven by available
savings in the GTAP model.
Factor supply can change through the quantity supplied or the quality supplied where the
latter is affected by technological change. Future economic growth is driven by technological
change but the assumption about how that change is distributed among inputs is down to the
user in MAGNET. The current set up of the model assumes that agriculture grows twice as
fast as the service sector and that manufacturing grows 2.65 times as fast. This growth is
distributed to bring about labour-saving technical change and some input-saving technical
change, thereby improving the quality of the inputs and their effective supply. Land
productivity is altered in the baseline in line with FAO projections which indicate increasing
land productivity in all regions to 2030.
4.3 Segmented agricultural and non-agricultural factor markets
Factor mobility refers to the speed in which factors can move between sectors in response to
changes in relative returns. The modelling of factor mobility has been extended along two
dimensions in the MAGNET model. Firstly, through the introduction of segmented labour
and capital markets in agriculture and non-agriculture and secondly, through the modelling
of land transformation between uses in agriculture, which is discussed below.
Two types of factors are identified in the GTAP model: perfectly mobile factors that can
switch freely between sectors leading to an equalisation in the rate of return, and sluggish
factors that adjust more slowly leading to different sectoral returns. The user can define
which factors are considered to be sluggish and which are perfectly mobile. The
transformation of sluggish factors between uses in different sectors is governed by a CET
function where the speed of adjustment to changes in relative returns, depends upon the
elasticity of transformation. Higher absolute levels of transformation elasticity allow sluggish
factors to be released more quickly in response to changes in relative returns. In the standard
setup of the GTAP model, land and natural resources are deemed to be sluggish factors with a
transformation elasticity of -1 for land and -0.001 for natural resources. Land is therefore
more mobile than natural resources but less mobile than labour and capital.
Keeney & Hertel (2005) motivate the introduction of segmented factor markets by four
observations: the role of off-farm factor mobility in farm incomes, co-movements in farm and
3
http://www.ers.usda.gov/Data/Macroeconomics/#BaselineMacroTables
14 | SHUTES, ROTHE & BANSE
non-farm wages, steady off-farm migration and persistent rural-urban wage differentials
(Keeney & Hertel, 2005, pp. 6-7). The MAGNET model allows for three types of factor
markets for labour and capital: unsegmented (GTAP), segmented with movement between
the markets determined by a CET function (following the GTAP-AGR model) or segmented
markets with dynamic factor markets (where factors migrate between sectors in response to
changes in relative returns). Segmented factor markets imply different factor prices in each
market and separate market clearing conditions. Currently there are two markets in the
segmented factor market module: agriculture and non-agriculture.
The segmented factor markets module links to the rest of the model through endowment
prices and the factor market clearing condition. The endowment price is defined as the
market price for the endowment plus any taxes on factor use. As there are two markets for
factors in the segmented market (agriculture and non-agriculture), the factor price is defined
as the agriculture market price plus taxes in the agricultural market and as the nonagriculture market price plus taxes for the non-agricultural market. The market price for each
factor is therefore a weighted average of the agricultural market price and the nonagricultural market price. Labour and capital are freely mobile within each sector leading to a
single price in the agricultural factor market and in the non-agricultural factor market.
The market clearing condition for the factor market in GTAP is replaced with two market
clearing conditions in the segmented factor market module; one for agriculture and one for
non-agriculture. The market supply of each factor is therefore equal to the demand for each
factor across all industries within each market. Total supply of each factor is the sum of the
supply of each factor in the agricultural and non-agricultural factor markets.
Although there are two distinct markets for mobile factors in the segmented factor markets
module, labour and capital can still move between the two markets. Indeed, extra labour or
capital needed in the non-agricultural sector must be pulled from the agricultural sector and
vice versa. The movement of factors between agricultural and non-agricultural markets is
determined either by changes in relative prices and an elasticity of transformation (CET
function) or by changes in relative prices and a speed of adjustment parameter (dynamic
factor markets).
In the absence of available data on the underlying barriers to factor mobility, Keeney &
Hertel (2005) introduce a CET function in GTAP-AGR to ‘transform’ farm labour into nonfarm labour and farm capital into non-farm capital. This option in MAGNET follows the set
up in GTAP-AGR and is documented in Keeney & Hertel (2005). The transformation of
factors between the two markets is governed by the elasticity of transformation. Note that the
elasticity of transformation within each market is endowment and region specific but not
market specific; so the same elasticities apply in both markets. The transformation elasticity
is set at -1 for all factors and regions in the first instance.
The dynamic factor market module offers a different way of determining the movement of
factors from agriculture to non-agriculture. The module includes an agricultural employment
equation,
qoagr(i,r)= DYNAGNAG(i,r) *
,
,
1 *100*time
where the percentage change in the quantity of labour or capital (i) used in agriculture
(qoagr) in each region (r) is determined by the relative wage between the two sectors, the
time period and a speed of adjustment parameter (DYNAGNAG). The initial difference
between the agricultural and non-agricultural wage levels is taken as indicative of the
reservation wage in agriculture. A value of 0.07 is used for the speed of adjustment between
the two markets based on econometric estimation. A full description of the estimation of the
agricultural employment equation can be found in Tabeau & Woltjer (2010).
4.4 Land allocation
Land allocation is the second of the MAGNET factor market extensions that pertain to factor
mobility. The standard GTAP model identifies only one form of land and allows for that land
FACTOR MARKETS IN APPLIED EQUILIBRIUM MODELS | 15
to be sluggishly transformed between the agricultural sectors that use the land in response to
changes in relative prices. The single tier function used to transform land between different
sectors in the GTAP model implies that the degree of transformability is the same between
land used in all sectors. In reality, land used to grow crops may be more easily transformed
between some land uses than others. For example, transforming the use of land between
different crop types is likely to be easier than the transformation from arable land to grazing
land. The MAGNET model captures these differences in transformability of land between
uses using a three tier Constant Elasticity of Transformation (CET) function following Huang
et al. (2004).
Figure 7. Land allocation in the MAGNET model
The process governing land allocation in the MAGNET model is shown in Figure 7. The
three-tiered CET structure allows the mobility of land between uses to vary according to how
the land is used. Sectors that use land are grouped according to ease of transformability.
Land used to grow cereals, oilseeds and protein crops is considered to be most easily
transformable between the three uses with a transformation elasticity of -0.6. The aggregated
land from these three uses is then transformable with field crop land and pasture land with a
lower degree of transformability, -0.4. Finally, aggregate crop and pasture land is
transformable into land used to grow rice and other crops (such as vegetables and orchard
fruits) with the lowest degree of transformability, -0.2.
4.5 Extensions of factor market modelling in MAGNET
The description of work for the Factor Markets project specifies three types of extensions to
factor market modelling. For each factor market, the specification, implementation and links
to other models should be improved; where specification refers to demand, supply, mobility
and substitutability and implementation refers to parameters and economic data that
underlie the modelling of the factor market. The review of CGE models provides ample
examples of how factor market modelling could be extended in MAGNET.
A range of possible extensions of factor market modelling in MAGNET are shown in Table 3.
The specification of the capital market could be improved through the introduction of capital
vintages, sector-specific capital or allowing for different types of investment good. The latter
would be interesting to better capture the impact of the wave of investment that accompanies
new industries on the capital stock, e.g. the development of an ethanol sector. The
implementation of capital market modelling could be improved through better estimation of
16 | SHUTES, ROTHE & BANSE
the substitution elasticities between capital and other factors as well as the parameters that
govern the movement of capital between agricultural and non-agricultural markets.
The specification of labour market modelling could be extended along many dimensions. An
improved modelling of unemployment that incorporates a positive relationship between real
wages and the supply of labour is desirable, as is the introduction of a minimum wage and
capturing union power in European labour markets. Broader concerns such as migration,
population dynamics and human capital accumulation, which are relevant to capturing the
impact of the accession of new member states, are also possible extensions for the modelling
of factor markets. The implementation of labour markets in the model could be strengthened
by improving the substitution elasticities between labour and other factors and the
parameters governing the movement of labour between agricultural and non-agricultural
markets. Finally, extending the segmented factor modelling to other sectors would also add
flexibility to the model and improve the modelling of factor markets in the EU.
The specification of the land market could be extended to explicitly include the competition
for land between all sectors of the economy: agricultural, forestry, manufacturing, services.
Moreover, the speed at which land is brought into use could be adjusted with a stickiness
parameter to reflect the different regulatory frameworks than govern land use in the member
states and candidate countries. As with the capital and labour markets, improving the
elasticities that govern the demand and supply of land would strengthen the modelling of the
land market.
Table 3. Possible extensions to factor market modelling in MAGNET
Factor
market
Specification
Implementation
Links to other
models
Capital
Vintages
Putty-clay
Industry-specific investment
matrix
Improving elasticity of
substitution with other
factors.
Improving
transformation/migrati
on parameter between
segmented markets.
CAPRI, AgriPoliS
Labour
Unemployment
Extend segmented market
specification
Minimum Wage
Stickiness (union power)
Human capital accumulation
Migration
Population dynamics
Improving elasticity of
substitution with other
factors.
Improving
transformation/migrati
on parameter between
segmented markets.
CAPRI
Land
Competition for land between all
sectors
Stickiness (regulatory
environment)
Improving elasticity of
substitution with other
factors.
Improving price
elasticity of supply
estimates.
CAPRI, farm level
models
The final selection of improvements in factor market modelling in MAGNET will be taken in
conjunction with the other members of the project as the extension work depends on the
output of other work packages and their timetable for research. The impact of improving
factor market modelling in MAGNET can be tested by comparing the results of the model
with and without the extensions; with the expectation that the extended model will better
capture the functioning of factor markets in the EU.
FACTOR MARKETS IN APPLIED EQUILIBRIUM MODELS | 17
5.
Factor markets in selected CGE-Models
From the multitude of CGE models, factor market modelling is only reviewed here in six key global models: GTAP and its variants: GTAP‐AGR,
GTAP‐E, GTAP-DYN and G‐MIG, GLOBE, the LINKAGE model, at the World Bank, MIRAGE, MAGNET and WORLDSCAN. Given the heavy data
requirements needed for a global model, most of the models described here use a common core database: GTAP. In addition, most models are
descendants of the GTAP global CGE model.
Table 4. Overview of selected CGE with factor market modelling
Model
Description
Literature
GTAP-AGR
The GTAP-AGR model represents a special purpose version of the GTAP model, designed to capture
certain structural features of world agricultural markets that are not well-reflected in the standard GTAP
model. GTAP-AGR considers the importance of off-farm factor mobility – particularly for labor – in
determining farm incomes. Improvements have been made in the case of characterizing the degree of
factor market segmentation between the farm and non-farm sectors as well as improving the
representation of input substitution possibilities in farm production. Furthermore farm household are
describes as entities which earn income from both farm and non-farm activities, pay taxes and consume
food and non-food products based on an explicit utility function.
Keeney & Hertel, 2005
GTAP-E
GTAP-E is an extended version of the GTAP model. In addition, GTAP-E considers carbon emissions
from the use of fossil fuels as well as international carbon emission trade. In addition to inter-fuel
substitution, the model incorporates a Social Account Matrix (SAM) which provides a full account of the
carbon tax revenues and expenditures and a more specific treatment of carbon emission trading.
Burniaux & Truong, 2002
GTAP-DYN
The dynamic model GTAP-DYN is an extended version of the standard GTAP modeling framework, with
consideration of dynamic behavior. It includes all the features of the standard GTAP Model, such as
consumer demands and inter-sectoral factor mobility, as well as incorporating a new treatment of
investment behavior and additional accounting relations to keep track of foreign ownership of capital.
Ianchovichina &
McDougall, 2000
G-MIG
G-MIG is based on the global applied general equilibrium GTAP model and database.
Adaptions have been made with regard to incorporate the movement of natural persons.
Labour is separated into domestic and migrant workers with different substitution elasticities.
Furthermore, features of the dynamic GTAP (GDyn) model have been combined with G-MIG to obtain a
dynamic migration model
Walmsley et al., 2007
MIRAGE
The multi-region, multi-sector model MIRAGE is a computable general equilibrium model for trade
policy analysis. It comprises imperfect competition, product differentiation by variety and by quality,
and foreign direct investment, in a sequential dynamic set-up where installed capital is assumed to be
immobile. MIRAGE is based on the MAcMaps database
Hedi Bchir et al., 2002
18 | SHUTES, ROTHE & BANSE
LINKAGE
LINKAGE is a global dynamic computable general equilibrium model (CGE). In its standard version, it is
a neo-classical model with both factor and goods market clearing Characteristic is a full range of tax
instruments, price markups, multiple labor skills, vintage capital, and energy as an input combined with
capital. Trade is modeled using nested Armington and production transformation structures to
determine bilateral trade flows. Tariffs are fully bilateral and the model captures international trade and
direct and indirect transportation costs. Also tariff rate quotas are implements. A recursive framework is
used to drive dynamics, with savings-led investment and productivity. The model incorporates
adjustment costs in capital markets and trade responsive endogenous productivity.
van der Mensbrugghe,
2005
GLOBE
GLOBE is a Social Accounting Matrix (SAM)-based global Computable General Equilibrium (CGE)
model based on GTAP. GLOBE consists of a set of single country CGE models linked by their trading
relationships. Price systems are linearly homogeneous and change in relative prices matter. Each model
region has its own numéraire price, the consumer price index (CPI) and a nominal exchange rate.
McDonald et al., 2007
WORLDSCAN
WorldScan is a recursively dynamic general equilibrium model for the world economy, based on GTAP
database. WorldScan has been developed to construct long-term scenarios for the global economy and to
enable policy analyses in the field of international economics. WorldScan can be adapted to arbitrary
sector and country Classifications.
Lejour et al., 2006
FACTOR MARKETS IN APPLIED EQUILIBRIUM MODELS | 19
5.1 Labour markets
Labour is classified as a mobile factor in the standard GTAP model. As such, labour is free to
move between sectors in a country or region in response to changes in relative prices, which
leads to an equalisation of the increase or decrease in the wage rate across all sectors. Two
types of labour are included in the standard GTAP model: skilled labour and unskilled
labour. Each type of labour has its own wage rate determined by the interaction of the supply
of labour (usually exogenous) and the demand for labour as a factor of production. Skilled
and unskilled labour are substitutable both for the other type of labour and the other factors
of production in the formation of the value added composite which in turn is substitutable
with composite (domestic and imported) intermediate goods in the production of the output
of each sector.
GTAP-DYN
G-MIG
X
X
X
Segmented markets (rural,
urban)
Unemployment
X
X
X
Farm/ off-farm
employment
X
Wage differences farm / offfarm
X
X
X
Mobility across sectors
X
X
X
X
X
X
Productivity differences of
permanent and temporary
labour
X
Sector specific restriction
X
Wage differences temporary
workers / resident workers
X
Wage bargaining
X
X
X
X
X
X
X
X
X
X
X
X
X
X
X
International migration
Complementarity between
skilled labour and capital
X
X
Minimum wage
Farm-owned (value-added)
aggregate
WORLDSCAN
GTAP-E
X
GLOBE
GTAP-AGR
X
LINKAGE
GTAP
Skilled/ unskilled labour
MIRAGE
Feature
Table 5. Labour market features in global CGE model
X
X
X
X
Activity specific restriction
X
Labour supply and
unemployment modelled
endogenously
X
X
20 | SHUTES, ROTHE & BANSE
5.2 Capital markets
In standard GTAP, capital can move between industries within a region, but not between
regions. The capital flow is immobile in the short run and mobile in the long run. In the
standard GTAP-model, investors are represented by a single agent, the global bank. The
global bank receives savings from the households and invests this savings. Investments are
represented by purchase of a commodity named ‘capital goods’. Capital goods are not
tradable. Because GTAP is a comparative static model, savings are incorporated as a fixed
share of the households’ utility function. At the global level, the amount of investments is the
sum of savings in each region. Time preferences for investments or influences on the decision
of saving levels are not captured. Therefore many attempts have been made to model capital
in CGEs. An overview is given in the following table.
X
X
X
X
WORLDSCAN
X
GLOBE
X
X
LINKAGE
X
MIRAGE
Mobile between sectors
G-MIG
Mobile between regions
GTAP-DYN
GTAP-E
GTAP-AGR
GTAP
Feature
Table 6. Capital market features in global CGE model
X
X
X
X
X
Capital mobile between
agriculture and non-agriculture
X
X
Restricted mobility between
sectors
X
X
Farm household modelling
X
Capital – Energy
complementarity/substitutability
X
X
Dynamic modelling of savings
and investments
X
Capital accumulation
X
Regional capital stocks
X
X
International assets and liabilities
X
X
International investment and
income flows
X
Financial assets
X
Intrinsic dynamic of physical and
financial asset stocks
X
Putty-clay hypothesis (immobility
of installed capital)
X
X
X
X
X
X
X
X
X
Partial mobility across sectors
X
X
Semi-putty-clay hypothesis
(partial immobility of installed
capital)
X
Vintage capital – old /new capital
X
Relation between savings and
demography
Estimated savings function
X
X
FACTOR MARKETS IN APPLIED EQUILIBRIUM MODELS | 21
Exogenous savings rate
X
Savings were derived from
welfare maximisation and
consumer decision
X
Regional savings and
investment can diverge
X
Regional capital markets –
imperfect capital mobility
X
Foreign direct investment
incorporated through linkage of
regional capital markets
X
Influence of transportation and
transaction costs on capital flow
X
X
5.3 Land markets
The standard assumption of land markets in GTAP can be described by a sluggish sectorspecific factor, namely land. Land – together with the factor ‘natural resource’, which is also
included in the GTAP data base – is assumed to be immobile across domestic agricultural
sectors. The agricultural sectors are the only land-using sectors in the data base.4 With the
assumption of land as sluggish land prices differs across the land using sectors in agriculture.
Similar to the standard presentation of land and capital, land use is also presented only in
value terms in the GTAP data base as a part of sectoral value added. Land use presented in
physical units is not modelled in the standard version of GTAP.
GTAP-DYN
G-MIG
X
X
X
Imperfectly mobility between
agricultural sectors
X
X
X
X
X
X
Regions classification as
land-constrained or not
X
Land mobility across sectors
X
Set aside
X
Aggregate supply of land
responds to changes of the
real aggregate land price
(logistic function)
Allocation of land responds
to the relative land prices
across the activities (CET
function)
4
X
WORLDSCAN
GTAP-E
X
GLOBE
GTAP-AGR
X
LINKAGE
GTAP
Only agricultural use
MIRAGE
Feature
Table 7. Land market features in global CGE model
X
X
X
X
X
X
X
X
X
X
Land use in forestry is covered under the factor ‘natural resource’.
X
X
X
22 | SHUTES, ROTHE & BANSE
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Comparative Analysis of Factor Markets
for Agriculture across the Member States
245123-FP7-KBBE-2009-3
The Factor Markets project in a nutshell
Title
Comparative Analysis of Factor Markets for Agriculture across the Member States
Funding scheme
Collaborative Project (CP) / Small or medium scale focused research project
Coordinator
CEPS, Prof. Johan F.M. Swinnen
Duration
01/09/2010 – 31/08/2013 (36 months)
Short description
Well functioning factor markets are a crucial condition for the competitiveness and
growth of agriculture and for rural development. At the same time, the functioning of the
factor markets themselves are influenced by changes in agriculture and the rural
economy, and in EU policies. Member state regulations and institutions affecting land,
labour, and capital markets may cause important heterogeneity in the factor markets,
which may have important effects on the functioning of the factor markets and on the
interactions between factor markets and EU policies.
The general objective of the FACTOR MARKETS project is to analyse the functioning of
factor markets for agriculture in the EU-27, including the Candidate Countries. The
FACTOR MARKETS project will compare the different markets, their institutional
framework and their impact on agricultural development and structural change, as well
as their impact on rural economies, for the Member States, Candidate Countries and the
EU as a whole. The FACTOR MARKETS project will focus on capital, labour and land
markets. The results of this study will contribute to a better understanding of the
fundamental economic factors affecting EU agriculture, thus allowing better targeting of
policies to improve the competitiveness of the sector.
Contact e-mail
[email protected]
Website
www.factormarkets.eu
Partners
17 (13 countries)
EU funding
1,979,023 €
EC Scientific officer Dr. Hans-Jörg Lutzeyer